mask_siteid_sampling <- site_protocol_quanti[
  site_protocol_quanti$variable == "year" &
    site_protocol_quanti$n >= 10,
  ]$siteid

mask_siteid_protocol <- site_protocol_quali[
  site_protocol_quali$unitabundance %in% c("Count", "Ind.100m2"), ]$siteid

mask_siteid <- mask_siteid_sampling[mask_siteid_sampling %in% mask_siteid_protocol]
trends_data <- abun_rich_op %>%
  left_join(op_protocol, by = "op_id") %>%
  filter(siteid %in% mask_siteid) %>%
  mutate(
    log_total_abundance = log(total_abundance),
    log_species_nb = log(species_nb)
  )
plot_trends <- trends_data %>%
  group_by(siteid) %>%
  nest() %>%
  ungroup() %>%
  slice_sample(n = 100) %>%
  mutate(
    p_abun = map2(data, siteid,
      ~plot_community_data(
        dataset = .x, y = "total_abundance", x = "year", title = .y)),
    p_rich = map2(data, siteid,
      ~plot_community_data(
        dataset = .x, y = "species_nb", x = "year", title = .y),
    )
  )

0.1 Total abundance

n_plot_by_batch <- 8
map(
  split(
    seq_len(nrow(plot_trends)),
    1:floor(nrow(plot_trends) / n_plot_by_batch) + 1),
  ~plot_grid(plotlist = plot_trends[.x, ]$p_abun)
  )
#> Warning in split.default(seq_len(nrow(plot_trends)), 1:floor(nrow(plot_trends)/
#> n_plot_by_batch) + : la taille de données n'est pas un multiple de la variable
#> découpée
#> Warning in simpleLoess(y, x, w, span, degree = degree, parametric =
#> parametric, : pseudoinverse used at 2007
#> Warning in simpleLoess(y, x, w, span, degree = degree, parametric =
#> parametric, : neighborhood radius 2
#> Warning in simpleLoess(y, x, w, span, degree = degree, parametric =
#> parametric, : reciprocal condition number 0
#> Warning in predLoess(object$y, object$x, newx = if
#> (is.null(newdata)) object$x else if (is.data.frame(newdata))
#> as.matrix(model.frame(delete.response(terms(object)), : pseudoinverse used at
#> 2007
#> Warning in predLoess(object$y, object$x, newx = if
#> (is.null(newdata)) object$x else if (is.data.frame(newdata))
#> as.matrix(model.frame(delete.response(terms(object)), : neighborhood radius 2
#> Warning in predLoess(object$y, object$x, newx = if
#> (is.null(newdata)) object$x else if (is.data.frame(newdata))
#> as.matrix(model.frame(delete.response(terms(object)), : reciprocal condition
#> number 0
#> $`2`

#> 
#> $`3`

#> 
#> $`4`

#> 
#> $`5`

#> 
#> $`6`

#> 
#> $`7`

#> 
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#> 
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#> 
#> $`10`

#> 
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#> 
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#> 
#> $`13`

0.2 Species richness

map(
  split(
    seq_len(nrow(plot_trends)),
    1:floor(nrow(plot_trends) / n_plot_by_batch) + 1
    ),
  ~plot_grid(plotlist = plot_trends[.x, ]$p_rich)
  )
#> Warning in split.default(seq_len(nrow(plot_trends)), 1:floor(nrow(plot_trends)/
#> n_plot_by_batch) + : la taille de données n'est pas un multiple de la variable
#> découpée
#> Warning in simpleLoess(y, x, w, span, degree = degree, parametric =
#> parametric, : pseudoinverse used at 2007
#> Warning in simpleLoess(y, x, w, span, degree = degree, parametric =
#> parametric, : neighborhood radius 2
#> Warning in simpleLoess(y, x, w, span, degree = degree, parametric =
#> parametric, : reciprocal condition number 0
#> Warning in predLoess(object$y, object$x, newx = if
#> (is.null(newdata)) object$x else if (is.data.frame(newdata))
#> as.matrix(model.frame(delete.response(terms(object)), : pseudoinverse used at
#> 2007
#> Warning in predLoess(object$y, object$x, newx = if
#> (is.null(newdata)) object$x else if (is.data.frame(newdata))
#> as.matrix(model.frame(delete.response(terms(object)), : neighborhood radius 2
#> Warning in predLoess(object$y, object$x, newx = if
#> (is.null(newdata)) object$x else if (is.data.frame(newdata))
#> as.matrix(model.frame(delete.response(terms(object)), : reciprocal condition
#> number 0
#> $`2`

#> 
#> $`3`

#> 
#> $`4`

#> 
#> $`5`

#> 
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#> 
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#> 
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#> 
#> $`10`

#> 
#> $`11`

#> 
#> $`12`

#> 
#> $`13`

0.3

tar_load(toy_dataset)
unique(toy_dataset$siteid)
#> [1] "S8633"  "S11138" "S534"   "S529"   "S11219"
plot_temporal_biomass <- function (bm_data = NULL, biomass_var = NULL, com = NULL, .log = FALSE) {

  #main_title <- paste0("Stab = ", round(1/(sync$cv_com), 2),", ", "Sync = ",
    #round(sync$synchrony, 2),", ", "CVsp = ", round(sync$cv_sp, 2))
  sym_bm_var <- rlang::sym(biomass_var)
  # Total
  total_biomass <- bm_data %>% 
  group_by(date) %>%
  summarise(!!sym_bm_var := sum(!!sym_bm_var, na.rm = FALSE))
  
  p <- bm_data %>%
    mutate(label = if_else(date == max(date), as.character(species), NA_character_)) %>%
  ggplot(aes_string(x = "date", y = biomass_var, color = "species")) + 
  geom_line() +
  lims(y = c(0, max(total_biomass[[biomass_var]]))) +
  labs(
  #title = main_title, subtitle = paste0("Station: ", station),
    y = "Biomass (g)", x = "Sampling date"
  ) +
  ggrepel::geom_label_repel(aes(label = label),
    size = 2.5, nudge_x = 1, na.rm = TRUE) 
  
  # Add total biomass
  p2 <- p +
    geom_line(data = total_biomass, aes(color = "black", size = 3)) +
    theme(legend.position = "none")

  # Add summary: richness, connectance, stab, t_lvl, sync, cv_sp 
  com %<>%
    mutate_if(is.double, round(., 2))

  label <- paste(
    "S = ", com$bm_std_stab,
    "sync = ", com$sync,
    "CVsp = ", com$cv_sp,
    "R = ", com$rich_tot_std,
    "C = ", com$ct,
    "Tlvl = ", com$t_lvl
  ) 

  p3 <- p2 +
    annotate("text", x = median(total_biomass$date),
      y = 15, label = label)

  if (.log) {
    p3 <- p3 + scale_y_log10() 
  }

  return(p3)
}

ti <- toy_dataset %>%
  filter(siteid == unique(toy_dataset$siteid)[2])
plot_population <- function (dataset = NULL, y_var = NULL, time_var = NULL) {

  sym_y_var <- rlang::sym(y_var)
  sym_time_var <- rlang::sym(time_var)
  # Total
  total_dataset <- dataset %>%
  group_by(!!sym_time_var) %>%
  summarise(!!sym_y_var := sum(!!sym_y_var, na.rm = FALSE))
  
  p <- dataset %>%
    mutate(label = if_else(!!sym_time_var == max(!!sym_time_var), as.character(species), NA_character_)) %>%
  ggplot(aes_string(x = time_var, y = y_var, color = "species")) + 
  geom_line() +
  lims(y = c(0, max(total_dataset[[y_var]]))) +
  labs(
  #title = main_title, subtitle = paste0("Station: ", station),
    y = "Biomass (g)", x = "Sampling time_var"
  ) +
  ggrepel::geom_label_repel(aes(label = label),
    size = 2.5, nudge_x = 1, na.rm = TRUE)
  
  # Add total biomass
  p2 <- p +
    geom_line(data = total_dataset, aes(color = "black", size = 3)) +
    theme(legend.position = "none")
  return(p2)

}

plot_population(dataset = ti, y_var = "abundance", time_var = "year")
#> Warning: ggrepel: 12 unlabeled data points (too many overlaps). Consider
#> increasing max.overlaps

plot_temporal_population(com = ti, ribbon = FALSE)

p <- plot_temporal_population(com = ti, ribbon = TRUE)

GeomRibbon$handle_na <- function(data, params) {  data }
p$data %>%
  ggplot(
    aes(y = abundance, ymin = ymin, ymax = ymax, x = year,
      fill = species)
    ) +
  geom_ribbon()
set.seed(1)

test <- data.frame(x = rep(1:10, 3), y = abs(rnorm(30)), z = rep(LETTERS[1:3],
    10)) %>% arrange(x, z)

test[test$x == 4, "y"] <- NA

test$ymax <- test$y
test$ymin <- 0
zl <- unique(test$z)
for (i in 2:length(zl)) {
    zi <- test$z == zl[i]
    zi_1 <- test$z == zl[i - 1]
    test$ymin[zi] <- test$ymax[zi_1]
    test$ymax[zi] <- test$ymin[zi] + test$ymax[zi]
}


# fix GeomRibbon
GeomRibbon$handle_na <- function(data, params) {  data }

ggplot(test, aes(x = x, y=y, ymax = ymax, ymin = ymin, fill = z)) +
  geom_ribbon()
toy_dataset %>%
  group_by(siteid, year, species) %>%
  summarise(test=n()>1) %>%
  filter(test)
pop_trends <- toy_dataset %>%
  filter(!siteid %in% c("S534", "S8633")) %>%
  group_by(siteid) %>%
  nest() %>%
  mutate(
    p_pop = map(data, ~plot_temporal_population(com = .x, ))
  )
#> Note: Using an external vector in selections is ambiguous.
#> ℹ Use `all_of(species_var)` instead of `species_var` to silence this message.
#> ℹ See <https://tidyselect.r-lib.org/reference/faq-external-vector.html>.
#> This message is displayed once per session.
#> Note: Using an external vector in selections is ambiguous.
#> ℹ Use `all_of(y_var)` instead of `y_var` to silence this message.
#> ℹ See <https://tidyselect.r-lib.org/reference/faq-external-vector.html>.
#> This message is displayed once per session.
#> Note: Using an external vector in selections is ambiguous.
#> ℹ Use `all_of(species)` instead of `species` to silence this message.
#> ℹ See <https://tidyselect.r-lib.org/reference/faq-external-vector.html>.
#> This message is displayed once per session.
pop_trends$p_pop
#> [[1]]
#> Warning: Removed 280 rows containing missing values (position_stack).

#> 
#> [[2]]

#> 
#> [[3]]
#> Warning: Removed 104 rows containing missing values (position_stack).

0.4 Analysis

0.5 Reproducibility

Reproducibility receipt

## datetime
Sys.time()
#> [1] "2021-12-14 19:34:55 CST"

## repository
if(requireNamespace('git2r', quietly = TRUE)) {
  git2r::repository()
} else {
  c(
    system2("git", args = c("log", "--name-status", "-1"), stdout = TRUE),
    system2("git", args = c("remote", "-v"), stdout = TRUE)
  )
}
#> Local:    main /home/alain/Documents/post-these/isu/RivFishTimeBiodiversityFacets
#> Head:     [9c010c3] 2021-12-15: Add mapView and visualisation for selected data

## session info
sessionInfo()
#> R version 4.0.5 (2021-03-31)
#> Platform: x86_64-pc-linux-gnu (64-bit)
#> Running under: Debian GNU/Linux 10 (buster)
#> 
#> Matrix products: default
#> BLAS:   /home/alain/.Renv/versions/4.0.5/lib/R/lib/libRblas.so
#> LAPACK: /home/alain/.Renv/versions/4.0.5/lib/R/lib/libRlapack.so
#> 
#> locale:
#>  [1] LC_CTYPE=fr_FR.UTF-8       LC_NUMERIC=C              
#>  [3] LC_TIME=fr_FR.UTF-8        LC_COLLATE=fr_FR.UTF-8    
#>  [5] LC_MONETARY=fr_FR.UTF-8    LC_MESSAGES=fr_FR.UTF-8   
#>  [7] LC_PAPER=fr_FR.UTF-8       LC_NAME=C                 
#>  [9] LC_ADDRESS=C               LC_TELEPHONE=C            
#> [11] LC_MEASUREMENT=fr_FR.UTF-8 LC_IDENTIFICATION=C       
#> 
#> attached base packages:
#> [1] stats     graphics  grDevices utils     datasets  methods   base     
#> 
#> other attached packages:
#>  [1] codyn_2.0.5             janitor_2.1.0           cowplot_1.1.1          
#>  [4] rnaturalearthdata_0.1.0 rnaturalearth_0.1.0     mapview_2.10.0         
#>  [7] sf_0.9-7                rmarkdown_2.11          scales_1.1.1           
#> [10] kableExtra_1.3.1        here_1.0.1              lubridate_1.7.9.2      
#> [13] magrittr_2.0.1          forcats_0.5.1           stringr_1.4.0          
#> [16] dplyr_1.0.4             purrr_0.3.4             readr_2.1.1            
#> [19] tidyr_1.1.2             tibble_3.1.6            ggplot2_3.3.3          
#> [22] tidyverse_1.3.0         tarchetypes_0.3.2       targets_0.8.1          
#> [25] conflicted_1.1.0        nvimcom_0.9-122        
#> 
#> loaded via a namespace (and not attached):
#>  [1] leafem_0.1.6       colorspace_2.0-0   ellipsis_0.3.2     class_7.3-18      
#>  [5] leaflet_2.0.4.1    rprojroot_2.0.2    snakecase_0.11.0   satellite_1.0.4   
#>  [9] base64enc_0.1-3    fs_1.5.1           rstudioapi_0.13    farver_2.0.3      
#> [13] ggrepel_0.9.1      fansi_0.5.0        xml2_1.3.2         codetools_0.2-18  
#> [17] splines_4.0.5      cachem_1.0.4       knitr_1.36         jsonlite_1.7.2    
#> [21] broom_0.7.4        cluster_2.1.1      dbplyr_2.1.0       png_0.1-7         
#> [25] compiler_4.0.5     httr_1.4.2         backports_1.2.1    assertthat_0.2.1  
#> [29] Matrix_1.3-2       fastmap_1.1.0      cli_3.1.0          htmltools_0.5.1.1 
#> [33] tools_4.0.5        igraph_1.2.6       gtable_0.3.0       glue_1.5.1        
#> [37] Rcpp_1.0.6         jquerylib_0.1.3    cellranger_1.1.0   raster_3.4-5      
#> [41] vctrs_0.3.8        nlme_3.1-152       crosstalk_1.1.1    xfun_0.28         
#> [45] ps_1.6.0           rvest_0.3.6        lifecycle_1.0.1    MASS_7.3-53.1     
#> [49] hms_1.1.1          parallel_4.0.5     yaml_2.2.1         memoise_2.0.0     
#> [53] sass_0.3.1         stringi_1.7.6      highr_0.9          e1071_1.7-4       
#> [57] permute_0.9-5      rlang_0.4.12       pkgconfig_2.0.3    evaluate_0.14     
#> [61] lattice_0.20-41    labeling_0.4.2     htmlwidgets_1.5.3  processx_3.5.2    
#> [65] tidyselect_1.1.1   bookdown_0.24      R6_2.5.1           generics_0.1.0    
#> [69] DBI_1.1.1          pillar_1.6.4       haven_2.3.1        withr_2.4.3       
#> [73] mgcv_1.8-34        units_0.6-7        sp_1.4-5           modelr_0.1.8      
#> [77] crayon_1.4.2       KernSmooth_2.23-18 utf8_1.2.2         tzdb_0.2.0        
#> [81] grid_4.0.5         readxl_1.3.1       data.table_1.13.6  git2r_0.29.0      
#> [85] callr_3.7.0        vegan_2.5-7        reprex_1.0.0       digest_0.6.27     
#> [89] classInt_0.4-3     webshot_0.5.2      stats4_4.0.5       munsell_0.5.0     
#> [93] viridisLite_0.3.0  bslib_0.2.4